THE DEVELOPMENT OF TOURISM RECOMMENDATION SYSTEM WITH SENTIMENT ANALYSIS AND PREFERENCE EXTRACTION BASED ON TOURIST ATTRACTION REVIEWS
One of the ways to revive the tourism industry is by strengthening tourism promotion through exhibition, event, or tourism recommendations based on tourists’ preferences. Several studies have been accomplished by building tourism recommendation systems to reach this opportunity. However, the solu...
Saved in:
Main Author: | |
---|---|
Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/72089 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
id |
id-itb.:72089 |
---|---|
spelling |
id-itb.:720892023-03-03T15:59:04ZTHE DEVELOPMENT OF TOURISM RECOMMENDATION SYSTEM WITH SENTIMENT ANALYSIS AND PREFERENCE EXTRACTION BASED ON TOURIST ATTRACTION REVIEWS Lubihana, Elan Indonesia Theses Tourism, Recommendation Systems, Sentiment Analysis, Lexicon Corpus, BoW, TF-IDF, LSTM, SVM, K-Means. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/72089 One of the ways to revive the tourism industry is by strengthening tourism promotion through exhibition, event, or tourism recommendations based on tourists’ preferences. Several studies have been accomplished by building tourism recommendation systems to reach this opportunity. However, the solutions offered in those studies could not solve a few constraints regarding data availability, particularly the usage of social media data as the ground aspect for tourism recommendations. Meanwhile, some tourists do not own social media accounts and some others are inactive users. Consequently, a new approach is essential for tourism recommendations despite limited data availability. This research was carried out to offer a solution by extracting positive sentiments from Google Maps to determine the characteristics of tourist destinations in Bandung Raya using lexicon corpus. The satisfaction scores reveal of 45,58 % positive, 10,50% neutral, and 43,91% negative. Furthermore, the sentiment classification indicates that Support Vector Machine (SVM)- Bag of Words (BoW) and SVM- Term Frequency-Inverse Document Frequency (TF-IDF) achieve the better average accuracy values than Long Short-Term Memory (LSTM). Besides, K-Means method is applied, and it produces two significant groups of tourist attractions according to their similar characteristics. Each group contains 74 and 42 members of tourist attractions. In addition, the recommendation system gets higher than 0,5 precision for four or more recommendations. text |
institution |
Institut Teknologi Bandung |
building |
Institut Teknologi Bandung Library |
continent |
Asia |
country |
Indonesia Indonesia |
content_provider |
Institut Teknologi Bandung |
collection |
Digital ITB |
language |
Indonesia |
description |
One of the ways to revive the tourism industry is by strengthening tourism
promotion through exhibition, event, or tourism recommendations based on
tourists’ preferences. Several studies have been accomplished by building tourism
recommendation systems to reach this opportunity. However, the solutions offered
in those studies could not solve a few constraints regarding data availability,
particularly the usage of social media data as the ground aspect for tourism
recommendations. Meanwhile, some tourists do not own social media accounts
and some others are inactive users. Consequently, a new approach is essential for
tourism recommendations despite limited data availability. This research was
carried out to offer a solution by extracting positive sentiments from Google Maps
to determine the characteristics of tourist destinations in Bandung Raya using
lexicon corpus. The satisfaction scores reveal of 45,58 % positive, 10,50%
neutral, and 43,91% negative. Furthermore, the sentiment classification indicates
that Support Vector Machine (SVM)- Bag of Words (BoW) and SVM- Term
Frequency-Inverse Document Frequency (TF-IDF) achieve the better average
accuracy values than Long Short-Term Memory (LSTM). Besides, K-Means
method is applied, and it produces two significant groups of tourist attractions
according to their similar characteristics. Each group contains 74 and 42
members of tourist attractions. In addition, the recommendation system gets
higher than 0,5 precision for four or more recommendations. |
format |
Theses |
author |
Lubihana, Elan |
spellingShingle |
Lubihana, Elan THE DEVELOPMENT OF TOURISM RECOMMENDATION SYSTEM WITH SENTIMENT ANALYSIS AND PREFERENCE EXTRACTION BASED ON TOURIST ATTRACTION REVIEWS |
author_facet |
Lubihana, Elan |
author_sort |
Lubihana, Elan |
title |
THE DEVELOPMENT OF TOURISM RECOMMENDATION SYSTEM WITH SENTIMENT ANALYSIS AND PREFERENCE EXTRACTION BASED ON TOURIST ATTRACTION REVIEWS |
title_short |
THE DEVELOPMENT OF TOURISM RECOMMENDATION SYSTEM WITH SENTIMENT ANALYSIS AND PREFERENCE EXTRACTION BASED ON TOURIST ATTRACTION REVIEWS |
title_full |
THE DEVELOPMENT OF TOURISM RECOMMENDATION SYSTEM WITH SENTIMENT ANALYSIS AND PREFERENCE EXTRACTION BASED ON TOURIST ATTRACTION REVIEWS |
title_fullStr |
THE DEVELOPMENT OF TOURISM RECOMMENDATION SYSTEM WITH SENTIMENT ANALYSIS AND PREFERENCE EXTRACTION BASED ON TOURIST ATTRACTION REVIEWS |
title_full_unstemmed |
THE DEVELOPMENT OF TOURISM RECOMMENDATION SYSTEM WITH SENTIMENT ANALYSIS AND PREFERENCE EXTRACTION BASED ON TOURIST ATTRACTION REVIEWS |
title_sort |
development of tourism recommendation system with sentiment analysis and preference extraction based on tourist attraction reviews |
url |
https://digilib.itb.ac.id/gdl/view/72089 |
_version_ |
1822006761629941760 |